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Parameter Identification with the Random Perturbation Particle Swarm Optimization Method and Sensitivity Analysis of an Advanced Pressurized Water Reactor Nuclear Power Plant Model for Power Systems

机译:电力系统高级压水堆核电站模型的随机扰动粒子群优化方法参数辨识与灵敏度分析

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The ability to obtain appropriate parameters for an advanced pressurized water reactor (PWR) unit model is of great significance for power system analysis. The attributes of that ability include the following: nonlinear relationships, long transition time, intercoupled parameters and difficult obtainment from practical test, posed complexity and difficult parameter identification. In this paper, a model and a parameter identification method for the PWR primary loop system were investigated. A parameter identification process was proposed, using a particle swarm optimization (PSO) algorithm that is based on random perturbation (RP-PSO). The identification process included model variable initialization based on the differential equations of each sub-module and program setting method, parameter obtainment through sub-module identification in the Matlab/Simulink Software (Math Works Inc., Natick, MA, USA) as well as adaptation analysis for an integrated model. A lot of parameter identification work was carried out, the results of which verified the effectiveness of the method. It was found that the change of some parameters, like the fuel temperature and coolant temperature feedback coefficients, changed the model gain, of which the trajectory sensitivities were not zero. Thus, obtaining their appropriate values had significant effects on the simulation results. The trajectory sensitivities of some parameters in the core neutron dynamic module were interrelated, causing the parameters to be difficult to identify. The model parameter sensitivity could be different, which would be influenced by the model input conditions, reflecting the parameter identifiability difficulty degree for various input conditions.
机译:获得适用于高级压水堆(PWR)单元模型的适当参数的能力对于电力系统分析具有重要意义。该能力的属性包括:非线性关系,过渡时间长,相互耦合的参数以及难以从实际测试中获得的结果,带来的复杂性和难以识别的参数。本文研究了压水堆一次回路系统的模型和参数辨识方法。提出了一种使用基于随机扰动(RP-PSO)的粒子群优化(PSO)算法的参数识别过程。识别过程包括基于每个子模块的微分方程的模型变量初始化和程序设置方法,通过Matlab / Simulink软件(Math Works Inc.,内蒂克,马萨诸塞州,美国)通过子模块识别获得参数,以及集成模型的适应性分析。进行了大量的参数辨识工作,结果验证了该方法的有效性。发现一些参数的变化,例如燃料温度和冷却剂温度反馈系数,改变了模型增益,其轨迹灵敏度不为零。因此,获得它们的适当值对模拟结果有重大影响。核心中子动力学模块中某些参数的轨迹敏感性相互关联,导致参数难以识别。模型参数的灵敏度可能会有所不同,这会受到模型输入条件的影响,反映出各种输入条件下的参数可识别性程度。

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